I will build a secure rag ai chatbot app for documents


Over deze dienst
Welcome to enterprise-grade AI integration.
Many organizations want to use the power of Large Language Models on internal files, but face two massive issues: public data leaks and mixed-user data crossover.
I build secure, session-isolated RAG (Retrieval-Augmented Generation) web applications that keep your business data completely private and performant.
What this application delivers:
Session Isolation: Prevents data leaks by creating independent runtimes and vector store keys for separate users.
Smart Document Queries: Dynamic interfaces that organize files into distinct sections for clear navigation.
High-Performance Architecture: Fast text-splitting and optimized vector indexing using FAISS/Chroma for precise retrieval.
Conversational Memory: Context-aware streaming chains that remember past messages for natural follow-ups.
Premium Interface: Fully dark-mode optimized dashboard layout built with Gradio/Streamlit.
Please message me with your data structure requirements before ordering so we can map out the perfect solution!
Maak kennis met Praveen
Expert AI Engineer and Custom RAG App Developer
- Afkomstig uitIndia
- Lid sindsapr 2026
- Gem. reactietijd1 uur
Talen
Engels
Mijn portfolio
Veelgestelde vragen
What technical stack do you use for development?
I build applications primarily in Python, leveraging LangChain and LangGraph for orchestrating chains, FAISS or ChromaDB for vector stores, and Streamlit or Gradio for sleek web interfaces.
How is data isolation handled between different users?
The architecture rewrites vector store logic to securely isolate data streams. Files uploaded by User A are stored in a partitioned vector database instance that cannot be accessed or queried by User B's session runtime.

